Genann
Jansson
Genann | Jansson | |
---|---|---|
7 | 6 | |
1,905 | 2,977 | |
- | - | |
0.0 | 7.1 | |
8 months ago | 20 days ago | |
C | C | |
zlib License | GNU General Public License v3.0 or later |
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Genann
- Simple neural network library in ANSI C
- Genann: Simple neural network library in ANSI C
- Machine learning Library in C?
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Ask HN: What ML platform are you using?
> I am very much a beginner in the space of machine learning
While the (precious and useful) advice around seem to cover mostly the bigger infrastructures, please note that
you can effectively do an important slice of machine learning work (study, personal research) with just a battery-efficiency-level CPU (not GPU), in the order of minutes, on a battery. That comes before going to "Big Data".
And there are lightweight tools: I am current enamoured with Genann («minimal, well-tested open-source library implementing feedfordward artificial neural networks (ANN) in C»), a single C file of 400 lines compiling to a 40kb object, yet well sufficient to solve a number of the problems you may meet.
https://codeplea.com/genann // https://github.com/codeplea/genann
After all, is it a good idea to have tools that automate process optimization while you are learning the deal? Only partially. You should build - in general and even metaphorically - the legitimacy of your Python ops on a good C ground.
And: note that you can also build ANNs in R (and other math or stats environments). If needed or comfortable...
Also note - reminder - that the MIT lessons of Prof. Patrick Winston for the Artificial Intelligence course (classical AI with a few lessons on ANNs) are freely available. That covers the grounds relative to climb into the newer techniques.
- Small tensor library in C99
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C Deep
Genann - Simple ANN in C89, without additional dependencies. Zlib
Jansson
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A good C library to parse json data
I'm a fan of jansson easy to use and great documentation
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jemi: a compact JSON serializer for embedded systems
Context: I needed to emit rather complex compound JSON data for a C-based project I'm working on. I could do it all with sprintf(), but it got messy quickly. I looked at available libraries such as jansson and CCAN's json, but they both used malloc(), which isn't an option in my case.
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How can I parse JSON with C?
I find jansson quite usable and minimal: https://github.com/akheron/jansson
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Good json libraries?
JanSON has been really good for my uses. Simple, intuitive, fast.
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How I cut GTA Online loading times by 70%
I don't see why something like Jansson wouldn't.
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C Deep
Jansson - Library for encoding, decoding and manipulating JSON. MIT
What are some alternatives?
tiny-cnn - header only, dependency-free deep learning framework in C++14
json-c - https://github.com/json-c/json-c is the official code repository for json-c. See the wiki for release tarballs for download. API docs at http://json-c.github.io/json-c/
Recast/Detour - Industry-standard navigation-mesh toolset for games
cJSON - Ultralightweight JSON parser in ANSI C
frugally-deep - Header-only library for using Keras (TensorFlow) models in C++.
RapidJSON - A fast JSON parser/generator for C++ with both SAX/DOM style API
tensorflow - An Open Source Machine Learning Framework for Everyone
libjson - a JSON parser and printer library in C. easy to integrate with any model.
ANNetGPGPU - A GPU (CUDA) based Artificial Neural Network library
JSMN - Jsmn is a world fastest JSON parser/tokenizer. This is the official repo replacing the old one at Bitbucket
BayesOpt - BayesOpt: A toolbox for bayesian optimization, experimental design and stochastic bandits.
JsonCpp - A C++ library for interacting with JSON.